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Water Quality Prediction of Water Sources Based on Meteorological Factors using the CA-NARX Approach
Authors:Wang  Jing  Geng  Yan  Zhao  Qiuna  Zhang  Yin  Miao  Yongtai  Yuan  Xumei  Jin  Yuxi  Zhang  Wen
Institution:1.School of Economics and Management, Yanshan University, Qinhuangdao, 066004, Hebei, China
;2.Research Center of Regional Economic Development, Yanshan University, Qinhuangdao, 066004, Hebei, China
;3.School of Science, Yanshan University, Qinhuangdao, 066004, Hebei, China
;4.Bureau of Hydrological and Water Resources Survey, Qinhuangdao, 066004, Hebei, China
;5.College of Biology and Environmental Engineering, Zhejiang Shuren University, Hangzhou, 310015, Zhejiang, China
;
Abstract:

With the increasingly serious problem of surface water environmental safety, it is of great significance to study the changing trend of reservoir water quality, and it is necessary to establish a water quality prediction and early warning system for the management and maintenance of water resources. Aiming at the problem of water quality prediction in reservoirs, a CA-NARX algorithm is designed, which combines the improved dynamic clustering algorithm with the idea of machine learning and the forward dynamic regression neural network. The improved dynamic clustering algorithm is used to classify the eutrophication degree of waterbodies according to the total phosphorus and total nitrogen content. Considering four meteorological factors, air temperature, water temperature, water surface evaporation, and rainfall, synthetically for each water quality condition, the total phosphorus and total nitrogen in the waterbody are forecasted by an improved forward NARX dynamic regression neural network. Based on this, the CA-NARX prediction algorithm can realize short period water quality prediction. Compared with the traditional support vector regression machine model, improved GA-BP neural network, and exponential smoothing method, the CA-NARX model has the least prediction error.

Keywords:
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